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Incipient Fault Detection Based on Exergy Efficiency and Support Vector Data Description

机译:基于火用效率和支持向量数据描述的早期故障检测

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Automatic fault detection techniques for chemical processes are critical to process safety and reliability. Support vector data description (SVDD) has been widely used in the fault detection areas because of its fast calculation speed and low classification error. However, for incipient faults with slight changes of characteristics, the SVDD model has high complexity, and in addition, the feature sample selection of SVDD has a great impact on the effectiveness of fault detection. In the paper, the complexity of the SVDD model is not only reduced based on process exergy-data abstraction using the mutual information method, but also the proposed method presents great fault detectability and isolability. Meanwhile, the proposed method can detect incipient faults with different severity and indicate the evolution direction of faults. Therefore, the main contribution of this paper is to provide a novel fault detection method based on the EESVDD for incipient fault, in which the advantages of exergy data is combined with the SVDD method. Finally, the effectiveness of the proposed method is illustrated by a numerical simulation case and an industry distillation column, respectively.
机译:化学过程的自动故障检测技术对于过程安全性和可靠性至关重要。支持向量数据描述(SVDD)由于其快速的计算速度和较低的分类误差而被广泛用于故障检测领域。然而,对于特征变化不大的初期故障,SVDD模型具有较高的复杂度,此外,SVDD的特征样本选择对故障检测的有效性有很大影响。该文不仅减少了基于相互信息方法的过程本能数据抽象的SVDD模型的复杂度,而且提出的方法具有很高的故障检测能力和可隔离性。同时,该方法可以检测出严重程度不同的早期断层,并指出断层的演化方向。因此,本文的主要贡献在于提供一种基于EESVDD的初生故障检测方法,该方法将能动数据的优点与SVDD方法相结合。最后,通过数值模拟和工业精馏塔分别说明了该方法的有效性。

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